Abstract
In recent years, machine learning models facilitated notable performance improvement in landslide displacement prediction. However, most existing prediction models which ignore landslide data at each time can provide a different value and meaning. To analyze and predict landslide displacement better, we propose a dynamic landslide displacement prediction model based on time series analysis and a double-bidirectional long short term memory (Double-BiLSTM) model. First, the cumulative landslide displacement is decomposed into trend and periodic displacement components according to time series analysis via the exponentially weighted moving average (EWMA) method. We consider that trend displacement is mainly influenced by landslide factors, and we apply a BiLSTM model to predict landslide trend displacement. This paper analyzes the internal relationship between rainfall, reservoir level and landslide periodic displacement. We adopt the maximum information coefficient (MIC) method to calculate the correlation between influencing factors and periodic displacement. We employ the BiLSTM model for periodic displacement prediction. Finally, the model is validated against data pertaining to the Baishuihe landslide in the Three Gorges, China. The experimental results and evaluation indicators demonstrate that this method achieves a better prediction performance than the classical prediction methods, and landslide displacement can be effectively predicted.
Highlights
This paper considers that landslide displacement data are typical time series data, and a hybrid dynamic landslide displacement prediction model based on data is constructed by combining a time series analysis method and deep learning model
After comparing the results obtained with the mixed dynamic Double-bidirectional long short term memory (BiLSTM) model comparing the results with the mixed to dynamic to After the actual displacement values obtained of the Baishuihe landslide, verify the model prediction performance over displacement other algorithms, this of paper compared landslide, the Double-BiLSTM
Rithm according to the time series analysis theory, so the prediction effects of trend and trend displacement is mainly affected by internal landslide factors, this paper periodicBecause displacement values are compared
Summary
Landslides damage the natural environment, cause soil erosion on slopes and alter landforms and destroy buildings and infrastructure in villages and towns and result in a large number of casualties in serious cases. China is one of the countries most seriously affected by landslide disasters due to its vast territory, complex terrain and changeable climate. In China, many people live and work on and near the slopes. A landslide occurs suddenly, the process of a slope becoming a landslide can be monitored and predicted to a certain extent. According to China’s national geological disaster report for 2020, 4810 landslides occurred in China in 2020, accounting for 61.3%
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